首页> 外文期刊>Computers in Biology and Medicine >Studies in the extensively automatic construction of large odds-based inference networks from structured data. Examples from medical, bioinformatics, and health insurance claims data
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Studies in the extensively automatic construction of large odds-based inference networks from structured data. Examples from medical, bioinformatics, and health insurance claims data

机译:从结构化数据广泛自动构建大型赔率的推论网络的研究。 来自医疗,生物信息学和健康保险声明数据的实例

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Theoretical and methodological principles are presented for the construction of very large inference nets for odds calculations, composed of hundreds or many thousands or more of elements, in this paper generated by structured data mining. It is argued that the usual small inference nets can sometimes represent rather simple, arbitrary estimates. Examples of applications in clinical and public health data analysis, medical claims data and detection of irregular entries, and bioinformatics data, are presented. Construction of large nets benefits from application of a theory of expected information for sparse data and the Dirac notation and algebra. The extent to which these are important here is briefly discussed. Purposes of the study include (a) exploration of the properties of large inference nets and a perturbation and tacit conditionality models, (b) using these to propose simpler models including one that a physician could use routinely, analogous to a "risk score", (c) examination of the merit of describing optimal performance in a single measure that combines accuracy, specificity, and sensitivity in place of a ROC curve, and (d) relationship to methods for detecting anomalous and potentially fraudulent data.
机译:在本文产生的由结构化数据挖掘产生的本文中,介绍了大量推理网的结构和方法论原理,用于对几百个或多个元素组成的赔率计算。有人认为通常的小推理网有时可以代表相当简单,任意估计。介绍了临床和公共健康数据分析中的应用的例子,提出了医学权利要求和检测不规则条目,以及生物信息学数据。从应用稀疏数据和DIRAC符号和代数的预期信息理论的应用,大网的建设受益。简要讨论了这些重要的程度。该研究的目的包括(a)探索大推理网的性质和扰动和默塞特条件模型,(b)使用这些来提出更简单的模型,包括一个医师可以常规使用的模型,类似于“风险分数”, (c)检查在单一措施中描述最佳性能的优点,该措施将准确性,特异性和灵敏度代替ROC曲线代替ROC曲线,以及(d)与检测异常和潜在欺诈性数据的方法的关系。

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